We analyzed the invariant mass spectrum of near-threshold exotic states for one-channel candidates with a deep neural network. It can extract the scattering length and effective range, which would shed light on the nature of given states, from the experimental mass spectrum. As an appli-cation, the mass spectrum of the X (3872) and the T + cc are studied. The obtained scattering lengths, effective ranges, and most relevant thresholds are consistent with those from fitting to the experimental data. The advantage of the neural network is that it is more stable than the fitting, especially for low-statistic data. The network, which provides another way to analyze the experimental data, can also be applied to other one-channel near-threshold exotic candidates.
Study of exotic hadrons with machine learning
Jiahao Liu,Zhenyu Zhang,Jifeng Hu,Qian Wang
Published 2022 in Physical Review D
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- Publication year
2022
- Venue
Physical Review D
- Publication date
2022-02-10
- Fields of study
Physics, Computer Science
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